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TemporalNode2vec: Temporal Node Embedding in Temporal Networks

机译:TemporalNode2VEC:嵌入时间网络中的时间节点

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The goal of graph embedding is to learn a representation of graphs vertices in a latent low-dimensional space in order to encode the structural information that lies in graphs. While real-world networks evolve over time, the majority of research focuses on static networks, ignoring local and global evolution patterns. A simplistic approach consists of learning nodes embeddings independently for each time step. This can cause unstable and inefficient representations over time. We present a novel dynamic graph embedding approach that learns continuous time-aware node representations. Overall, we demonstrate that our method improves node classification tasks comparing to previous static and dynamic approaches as it achieves up to 14% gain regarding to the F1 score metric. We also prove that our model is more data-efficient than several baseline methods, as it affords to achieve good performances with a limited number of vertex representation features.
机译:图形嵌入的目标是在潜伏的低维空间中学习图表顶点的表示,以便编码图表中的结构信息。虽然现实世界网络随着时间的推移而发展,但大多数研究都侧重于静态网络,忽略了本地和全球演进模式。一个简单的方法包括每个时间步骤独立地嵌入的学习节点。随着时间的推移,这可能会导致不稳定和低效的表示。我们提出了一种新颖的动态图形嵌入方法,了解了连续时间感知节点表示。总的来说,我们展示了我们的方法改进了节点分类任务,与之前的静态和动态方法相比,它可以实现高达14%的增益,这是关于F1得分度量的增益。我们还证明,我们的模型比几种基线方法更具数据效率,因为它提供了利用有限数量的顶点表示特征来实现良好的性能。

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